Genetics Selection Evolution (Jul 2023)

E-GWAS: an ensemble-like GWAS strategy that provides effective control over false positive rates without decreasing true positives

  • Guang-Liang Zhou,
  • Fang-Jun Xu,
  • Jia-Kun Qiao,
  • Zhao-Xuan Che,
  • Tao Xiang,
  • Xiao-Lei Liu,
  • Xin-Yun Li,
  • Shu-Hong Zhao,
  • Meng-Jin Zhu

DOI
https://doi.org/10.1186/s12711-023-00820-3
Journal volume & issue
Vol. 55, no. 1
pp. 1 – 17

Abstract

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Abstract Background Genome-wide association studies (GWAS) are an effective way to explore genotype–phenotype associations in humans, animals, and plants. Various GWAS methods have been developed based on different genetic or statistical assumptions. However, no single method is optimal for all traits and, for many traits, the putative single nucleotide polymorphisms (SNPs) that are detected by the different methods do not entirely overlap due to the diversity of the genetic architecture of complex traits. Therefore, multi-tool-based GWAS strategies that combine different methods have been increasingly employed. To take this one step further, we propose an ensemble-like GWAS strategy (E-GWAS) that statistically integrates GWAS results from different single GWAS methods. Results E-GWAS was compared with various single GWAS methods using simulated phenotype traits with different genetic architectures. E-GWAS performed stably across traits with different genetic architectures and effectively controlled the number of false positive genetic variants detected without decreasing the number of true positive variants. In addition, its performance could be further improved by using a bin-merged strategy and the addition of more distinct single GWAS methods. Our results show that the numbers of true and false positive SNPs detected by the E-GWAS strategy slightly increased and decreased, respectively, with increasing bin size and when the number and the diversity of individual GWAS methods that were integrated in E-GWAS increased, the latter being more effective than the bin-merged strategy. The E-GWAS strategy was also applied to a real dataset to study backfat thickness in a pig population, and 10 candidate genes related to this trait and expressed in adipose-associated tissues were identified. Conclusions Using both simulated and real datasets, we show that E-GWAS is a reliable and robust strategy that effectively integrates the GWAS results of different methods and reduces the number of false positive SNPs without decreasing that of true positive SNPs.